[Eeglablist] Epoch data after time-frequency transform?

Eric Rawls elrawls at email.uark.edu
Thu Nov 2 18:13:28 PDT 2017


Thanks Tarik - so far the approach I've been taking is to cut arbitrarily
long epochs out of the continuous EEG, but this is sometimes irritating
because it increases the size of the .set file substantially and duplicates
a bunch of events, which sometimes makes counting trials per condition
annoying. It gets the job done, but I'm thinking that if I were to simply
transform the continuous data before epoching none of this would be an
issue.

Any experience with this approach? I don't really use the gui anyway, so
that's not an issue. What EEGLAB function would you use to accomplish this?
I guess a related question is, do you know if it's possible to insert
events into a time-frequency matrix rather than the usual EEG.data time X
activation matrix? That would make it easier, if I could actually insert
the time-locking event of interest into the TF representation directly.
Thanks,
Eric



On Mon, Oct 30, 2017 at 8:44 PM, Tarik S Bel-Bahar <tarikbelbahar at gmail.com>
wrote:

> Hello Eric,
>
> Totally sane idea!
>
> One option within eeglab is to cut into longer epochs, do TF,  and then
> ignore the edges/artifacts time-periods of the epochs.
>
> Another option is to review various TF techniques and use ones that create
> less or little edge artifacts.
>
> If you haven't had a chance to yet,  check out Mike X Cohen's excellent
> books, matlab scripts, and videos about this.
>
> Generally speaking you should be able to do this (e.g., epoch continuous
> time data), but you may have to do so outside of eeglab and/or using some
> eeglab functions in a code/script.
>
> See also chronux toolbox too if you haven't had a chance to yet.
>
>
>
>
>
> On Mon, Oct 30, 2017 at 8:11 AM, Eric Rawls <elrawls at email.uark.edu>
> wrote:
>
>> Hello,
>>
>> I am looking for ways to improve the low-frequency resolution of
>> time-frequency transforms, and I had the idea that it might be possible to
>> transform the continuous data to a time-frequency representation (using
>> wavelets or the Hilbert transform) before epoching the transformed data.
>> This would avoid edge artifacts at all but the first and last trials.
>> However, I'm not sure if this is possible in EEGLAB - does anyone have
>> experience with this, or a workaround to cut epochs from continuous
>> time-frequency domain data, time-locked to an event of interest?
>>
>> Thanks
>>
>> Eric Rawls, M.S.
>> Graduate Research Assistant
>> Department of Psychological Sciences
>> University of Arkansas
>>
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